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AIME
2007
Springer

Enhancing Automated Test Selection in Probabilistic Networks

13 years 10 months ago
Enhancing Automated Test Selection in Probabilistic Networks
Abstract. Most test-selection algorithms currently in use with probabilistic networks select variables myopically, that is, test variables are selected sequentially, on a one-by-one basis, based upon expected information gain. While myopic test selection is not realistic for many medical applications, non-myopic test selection, in which information gain would be computed for all combinations of variables, would be too demanding. We present three new test-selection algorithms for probabilistic networks, which all employ knowledge-based clusterings of variables; these are a myopic algorithm, a non-myopic algorithm and a semi-myopic algorithm. In a preliminary evaluation study, the semi-myopic algorithm proved to generate a satisfactory test strategy, with little computational burden.
Danielle Sent, Linda C. van der Gaag
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where AIME
Authors Danielle Sent, Linda C. van der Gaag
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